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Measuring loblolly pine crowns with drone imagery through deep learningOA
引用本文:Xiongwei Lou,Yanxiao Huang,Luming Fang,Siqi Huang,Haili Gao,Laibang Yang,Yuhui Weng,I.-K.uai Hung. Measuring loblolly pine crowns with drone imagery through deep learningOA[J]. 林业研究, 2022, 33(1): 227-238
作者姓名:Xiongwei Lou  Yanxiao Huang  Luming Fang  Siqi Huang  Haili Gao  Laibang Yang  Yuhui Weng  I.-K.uai Hung
作者单位:School of Information Engineering,Zhejiang A & F University,Lin'an 311300,Zhejiang,People's Republic of China;Key Laboratory of State Forestry and Grassland Administration On Forestry Sensing Technology and Intelligent Equipment,Zhejiang A & F University,Lin'an 311300,Zhejiang,People's Republic of China;School of Information Engineering,Zhejiang A & F University,Lin'an 311300,Zhejiang,People's Republic of China;Key Laboratory of Forestry Intelligent Monitoring and Information Technology of Zhejiang Province,Zhejiang A & F University,Lin'an 311300,Zhejiang,People's Republic of China;Jiyang College of Zhejiang A & F University,Zhuji 311800,Zhejiang,People's Republic of China;College of Forestry and Biotechnology,Zhejiang A & F University,Lin'an 311300,Zhejiang,People's Republic of China;School of Information Engineering,Zhejiang A & F University,Lin'an 311300,Zhejiang,People's Republic of China;College of Forestry and Agriculture,Stephen F.Austin State University,Nacogdoches,TX 75962,USA
基金项目:Part of the research was also supported by Zhejiang Provincial Key Science and Technology Project (2018C02013);
摘    要:In modeling forest stand growth and yield, crown width, a measure for stand density, is among the parameters that allows for estimating stand timber volumes. However,accurately measuring tree crown size in the field, in particular for mature trees, is challenging. This study demonstrated a novel method of applying machine learning algorithms to aerial imagery acquired by an unmanned aerial vehicle(UAV) to identify tree crowns and their widths in two loblolly pine plantations in eastern Texas, US...


Measuring loblolly pine crowns with drone imagery through deep learning
Xiongwei Lou,Yanxiao Huang,Luming Fang,Siqi Huang,Haili Gao,Laibang Yang,Yuhui Weng,I.-K.uai Hung. Measuring loblolly pine crowns with drone imagery through deep learning[J]. Journal of Forestry Research, 2022, 33(1): 227-238
Authors:Xiongwei Lou  Yanxiao Huang  Luming Fang  Siqi Huang  Haili Gao  Laibang Yang  Yuhui Weng  I.-K.uai Hung
Abstract:In modeling forest stand growth and yield,crown width,a measure for stand density,is among the parameters that allows for estimating stand timber volumes.However,accurately measuring tree crown size in the field,in particu-lar for mature trees,is challenging.This study demonstrated a novel method of applying machine learning algorithms to aerial imagery acquired by an unmanned aerial vehi-cle (UAV) to identify tree crowns and their widths in two loblolly pine plantations in eastern Texas,USA.An ortho mosaic image derived from UAV-captured aerial photos was acquired for each plantation (a young stand before canopy closure,a mature stand with a closed canopy).For each site,the images were split into two subsets:one for training and one for validation purposes.Three widely used object detection methods in deep learning,the Faster region-based convolutional neural network (Faster R-CNN),You Only Look Once version 3 (YOLOv3),and single shot detection(SSD),were applied to the training data,respectively.Each was used to train the model for performing crown recogni-tion and crown extraction.Each model output was evaluated using an independent test data set.All three models were successful in detecting tree crowns with an accuracy greater than 93%,except the Faster R-CNN model that failed on the mature site.On the young site,the SSD model performed the best for crown extraction with a coefficient of determination(R2) of 0.92,followed by Faster R-CNN (0.88) and YOLOv3(0.62).As to the mature site,the SSD model achieved a R2 as high as 0.94,follow by YOLOv3 (0.69).These deep leaning algorithms,in particular the SSD model,proved to be successfully in identifying tree crowns and estimat-ing crown widths with satisfactory accuracy.For the pur-pose of forest inventory on loblolly pine plantations,using UAV-captured imagery paired with the SSD object deten-tion application is a cost-effective alternative to traditional ground measurement.
Keywords:UAV image  Crown recognition  Object detection  Crown width measurement
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